//===----------------------------------------------------------------------===//
//
// Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions.
// See https://llvm.org/LICENSE.txt for license information.
// SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
// SPDX-FileCopyrightText: Copyright (c) 2025 NVIDIA CORPORATION & AFFILIATES.
//
//===----------------------------------------------------------------------===//

#ifndef _CUDA_STD___RANDOM_BINOMIAL_DISTRIBUTION_H
#define _CUDA_STD___RANDOM_BINOMIAL_DISTRIBUTION_H

#include <cuda/std/detail/__config>

#if defined(_CCCL_IMPLICIT_SYSTEM_HEADER_GCC)
#  pragma GCC system_header
#elif defined(_CCCL_IMPLICIT_SYSTEM_HEADER_CLANG)
#  pragma clang system_header
#elif defined(_CCCL_IMPLICIT_SYSTEM_HEADER_MSVC)
#  pragma system_header
#endif // no system header

#include <cuda/std/__random/is_valid.h>
#include <cuda/std/__random/uniform_real_distribution.h>
#include <cuda/std/cmath>

#include <cuda/std/__cccl/prologue.h>

_CCCL_BEGIN_NAMESPACE_CUDA_STD

template <class _IntType = int>
class binomial_distribution
{
  static_assert(__libcpp_random_is_valid_inttype<_IntType>, "IntType must be a supported integer type");

public:
  // types
  using result_type = _IntType;

  class param_type
  {
    result_type __t_;
    double __p_;
    double __pr_;
    double __odds_ratio_;
    result_type __r0_;

  public:
    using distribution_type = binomial_distribution;

    // Kemp, C. D. "A modal method for generating binomial variables." Communications in Statistics-Theory and
    // Methods 15.3 (1986): 805-813.
    _CCCL_API explicit param_type(result_type __t = 1, double __p = 0.5)
        : __t_{__t}
        , __p_{__p}
    {
      if (0 < __p_ && __p_ < 1)
      {
        __r0_ = static_cast<result_type>((__t_ + 1) * __p_);
        __pr_ = cuda::std::exp(
          cuda::std::lgamma(__t_ + 1.) - cuda::std::lgamma(__r0_ + 1.) - cuda::std::lgamma(__t_ - __r0_ + 1.)
          + __r0_ * cuda::std::log(__p_) + (__t_ - __r0_) * cuda::std::log(1 - __p_));
        __odds_ratio_ = __p_ / (1 - __p_);
      }
    }

    [[nodiscard]] _CCCL_API constexpr result_type t() const noexcept
    {
      return __t_;
    }
    [[nodiscard]] _CCCL_API constexpr double p() const noexcept
    {
      return __p_;
    }

    [[nodiscard]] friend _CCCL_API constexpr bool operator==(const param_type& __x, const param_type& __y) noexcept
    {
      return __x.__t_ == __y.__t_ && __x.__p_ == __y.__p_;
    }
#if _CCCL_STD_VER <= 2017
    [[nodiscard]] friend _CCCL_API constexpr bool operator!=(const param_type& __x, const param_type& __y) noexcept
    {
      return !(__x == __y);
    }
#endif //  _CCCL_STD_VER <= 2017

    friend class binomial_distribution;
  };

private:
  param_type __p_;

public:
  // constructors and reset functions
  _CCCL_API binomial_distribution() noexcept
      : binomial_distribution{1}
  {}
  _CCCL_API explicit binomial_distribution(result_type __t, double __p = 0.5) noexcept
      : __p_{param_type{__t, __p}}
  {}
  _CCCL_API explicit binomial_distribution(const param_type& __p) noexcept
      : __p_{__p}
  {}
  _CCCL_API constexpr void reset() noexcept {}

  // generating functions
  template <class _URng>
  _CCCL_API result_type operator()(_URng& __g)
  {
    return (*this)(__g, __p_);
  }

  // Reference: Kemp, C. D. "A modal method for generating binomial variables." Communications in Statistics-Theory and
  // Methods 15.3 (1986): 805-813.
  template <class _URng>
  _CCCL_API result_type operator()(_URng& __g, const param_type& __pr)
  {
    static_assert(__cccl_random_is_valid_urng<_URng>, "URng must meet the UniformRandomBitGenerator requirements");
    if (__pr.__t_ == 0 || __pr.__p_ == 0)
    {
      return 0;
    }
    if (__pr.__p_ == 1)
    {
      return __pr.__t_;
    }
    uniform_real_distribution<double> __gen;
    double __u = __gen(__g) - __pr.__pr_;
    if (__u < 0)
    {
      return __pr.__r0_;
    }
    double __pu      = __pr.__pr_;
    double __pd      = __pu;
    result_type __ru = __pr.__r0_;
    result_type __rd = __ru;
    while (true)
    {
      bool __break = true;
      if (__rd >= 1)
      {
        __pd *= __rd / (__pr.__odds_ratio_ * (__pr.__t_ - __rd + 1));
        __u -= __pd;
        __break = false;
        if (__u < 0)
        {
          return __rd - 1;
        }
      }
      if (__rd != 0)
      {
        --__rd;
      }
      ++__ru;
      if (__ru <= __pr.__t_)
      {
        __pu *= (__pr.__t_ - __ru + 1) * __pr.__odds_ratio_ / __ru;
        __u -= __pu;
        __break = false;
        if (__u < 0)
        {
          return __ru;
        }
      }
      if (__break)
      {
        return 0;
      }
    }
  }

  // property functions
  [[nodiscard]] _CCCL_API constexpr result_type t() const noexcept
  {
    return __p_.t();
  }
  [[nodiscard]] _CCCL_API constexpr double p() const noexcept
  {
    return __p_.p();
  }

  [[nodiscard]] _CCCL_API constexpr param_type param() const noexcept
  {
    return __p_;
  }
  _CCCL_API constexpr void param(const param_type& __p) noexcept
  {
    __p_ = __p;
  }

  [[nodiscard]] _CCCL_API constexpr result_type min() const noexcept
  {
    return 0;
  }
  [[nodiscard]] _CCCL_API constexpr result_type max() const noexcept
  {
    return t();
  }

  [[nodiscard]] _CCCL_API friend constexpr bool
  operator==(const binomial_distribution& __x, const binomial_distribution& __y) noexcept
  {
    return __x.__p_ == __y.__p_;
  }
#if _CCCL_STD_VER <= 2017
  [[nodiscard]] _CCCL_API friend constexpr bool
  operator!=(const binomial_distribution& __x, const binomial_distribution& __y) noexcept
  {
    return !(__x == __y);
  }
#endif //  _CCCL_STD_VER <= 2017

#if !_CCCL_COMPILER(NVRTC)
  template <class _CharT, class _Traits>
  friend ::std::basic_ostream<_CharT, _Traits>&
  operator<<(::std::basic_ostream<_CharT, _Traits>& __os, const binomial_distribution& __x)
  {
    using ostream_type                        = ::std::basic_ostream<_CharT, _Traits>;
    using ios_base                            = typename ostream_type::ios_base;
    const typename ios_base::fmtflags __flags = __os.flags();
    __os.flags(ios_base::dec | ios_base::left | ios_base::fixed | ios_base::scientific);
    _CharT __sp = __os.widen(' ');
    __os.fill(__sp);
    __os.flags(__flags);
    return __os << __x.t() << __sp << __x.p();
  }

  template <class _CharT, class _Traits>
  friend ::std::basic_istream<_CharT, _Traits>&
  operator>>(::std::basic_istream<_CharT, _Traits>& __is, binomial_distribution& __x)
  {
    using istream_type                        = ::std::basic_istream<_CharT, _Traits>;
    using ios_base                            = typename istream_type::ios_base;
    const typename ios_base::fmtflags __flags = __is.flags();
    using param_type                          = typename binomial_distribution::param_type;
    __is.flags(ios_base::dec | ios_base::skipws);
    result_type __t;
    double __p;
    __is >> __t >> __p;
    if (!__is.fail())
    {
      __x.param(param_type{__t, __p});
    }
    __is.flags(__flags);
    return __is;
  }
#endif // !_CCCL_COMPILER(NVRTC)
};

_CCCL_END_NAMESPACE_CUDA_STD

#include <cuda/std/__cccl/epilogue.h>

#endif // _CUDA_STD___RANDOM_BINOMIAL_DISTRIBUTION_H
